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Visualization of classifier results for article

Jun 25, 2019 This subsection presents the feature visualization results for two different input formats. The visualization of neurons and the image transformation for selected neurons are provided. Entire page input format. Figure 7 presents examples of the feature visualization for the trained classifier with the entire page format. While feature

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    Aug 23, 2021 Figure 7. Visualize score model results in a multi-class classification. Result interpretation. The left 16 columns represent the feature values of the test set. The columns with names like Scored Probabilities for Class XX are just like the Scored Probabilities column in the two-class

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